Journal of Animal and Veterinary Advances

Year: 2011
Volume: 10
Issue: 24
Page No. 3269 - 3273

Evaluation of the Multiple Imputation Method Regarding the Quantitative Characters with Missing Observations and Covariance Structures

Authors : SERGazel

References

Baygul, A., 2007. Evaluation of the commonly used missing value analysis methods. M.Sc. Thesis, Istanbul University, Institute of Health Science, Biostatistics, Istanbul.

Fitzmaurice, G.M., N.M. Laird and J.H. Ware, 2004. Applied Longitudinal Analysis. 1st Edn., John Wiley and Sons Inc., New York, ISBN: 0-471-21487-6, pp: 187-234.

Hedeker, D. and J.S. Rose, 2000. The Natural History of Smoking: A Pattern-Mixture Random-Effects Regression Model. In: Multivariate Applications in Substance Use Research, Rose, J.S., L. Chassin, C.C. Presson and S.J. Sherman (Eds.). Lawrence Erlbaum, Hillsdale, New Jersey, pp: 79-112.

Hedeker, D. and R.C. Gibbson, 2006. Longitudinal Data Analysis. John Wiley and Sons, Inc., New Jersey.

Hogan, J.W., 2009. Comments on: Missing data methods in longitudinal data studies: A review. Test, 18: 59-64.

Ibrahim, J.G. and G. Molenberghs, 2009. Missing data methods in Longitudinal studies: A review. Test, 18: 1-43.

Kenward, M.G. and J.R. Carpenter, 2009. Multiple Imputation. In: Longitudinal Data Analysis, Fitzmaurice, G., M. Davidian, G. Verbeke and G. Molenberghs (Eds.). Taylor and Francis Group, CRC Press, New York, pp: 477-499.

Kincaid, C., 2005. Guidelines for selecting the covariance structure in mixed model analysis. Stat. Data Anal., 30: 1-8.

Little, R.J.A. and D.B. Rubin, 2002. Statistical Analysis with Missing Data. 2th Edn., John Wiley Publishers Company, New York.

SPSS, 2010. IBM SPSS missing values 19. SPSS, Inc., IBM Company.

Sartori, N., A. Salvan and K. Thomaseth, 2005. Multiple imputation of missing values in a cancer mortality analysis with estimated exposure dose. Comput. Stat. Data Anal., 49: 937-953.

Schaffer, J.L. and M.K. Olsen, 1998. Multiple imputation for multivariate missing-data problems: A data analyst's perspective. Multivariate Behav. Res., 33: 545-571.

Ser, G., 2011. Model selection and comparing optimization techniques in marginal and non-marginal multilevel generalized linear mixed model using missing observed longitudinal data. Ph.D. Thesis, Yuzuncu Yil University, Institute of Natural Science, VAN.

Tabachnick, B.G. and L.S. Fidell, 2001. Using Multivariate Statistics. 4th Edn., Allyn and Bacon, Boston, MA., USA.

Twisk, J.W.R., 2004. Longitudinal data analysis. A comparison between generalized estimating equations and random coefficient analysis. Eur. J. Epidemiol., 19: 769-776.
CrossRef  |  

Venables, W.N. and C.M. Dichmont, 2004. GLMs, GAMs and GLMMs: An overview of theory for applications in fisheries research. Fish. Res., 70: 319-337.
CrossRef  |  

Design and power by Medwell Web Development Team. © Medwell Publishing 2024 All Rights Reserved